SEMAGIC: Learning Semantically Consistent Deformable 3D Representations from In-the-Wild Images 文章

ArXiv CS.CV2026-05-28NEWSen作者: Sky Cen, Wufei Ma, Guofeng Zhang, Alan Yuille, Adam Kortylewski

摘要

arXiv:2605.27938v1 Announce Type: new Abstract: Learning deformable 3D object models from single-view in-the-wild images has enabled impressive 3D shape reconstruction without supervision. However, it remains unclear whether these models capture the semantic structure required for downstream tasks. We find that existing deformable reconstruction approaches, despite producing visually plausible geometry, yield unstable correspondences across instances and perform poorly on semantic correspondence benchmarks. We introduce SEMAGIC, a framework for learning semantically consistent deformable 3D representations from single-view in-the-wild images. Rather than treating reconstruction as the end goal, SEMAGIC uses deformable modeling as a mechanism to discover category-level correspondences.

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